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ISSN 2575-6206
Original article
Vol. 10, Issue 1, 2026February 05, 2026 CDT

Conditional uncertainty-aware political deepfake detection with stochastic Convolutional Neural Networks

Rafael-Petrut Gardos,
Political deepfakesInformation integrityPublic trustDeepfake detectorUncertainty aware deepfake detectionRisk aware moderationCalibrated probabilistic outputUncertainty estimateConvolutional Neural NetworkGenerative image model
Copyright Logoccby-nc-sa-4.0 • https://doi.org/10.64336/001c.156299
Journal of High School Science
Gardos, Rafael-Petrut. 2026. “Conditional Uncertainty-Aware Political Deepfake Detection with Stochastic Convolutional Neural Networks.” Journal of High School Science 10 (1): 186–220. https:/​/​doi.org/​10.64336/​001c.156299.

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